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A Method of Active Learning Based on Fuzzy Set Theory

机译:一种基于模糊集理论的主动学习方法

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Active learning is one of the hotspots in the field of machine learning. The most crucial problem lies in the design of an appropriate valued criterion for selecting the most valuable unlabeled sample. Traditional active learning does not consider the fuzziness in the framework of active learning, which could significantly limit their performance. In this paper, an active learning method based on fuzzy set theory (FT-AL) is proposed to solve this problem. First, multi-criteria are established, which aim at the fuzziness in the framework of active learning. Second, weight factors are introduced into the multi-criteria. Finally, a fuzzy comprehensive evaluation model is established, which could evaluate the effect of the samples to be labeled. The experimental results show that the proposed methods have positive effects on improving the effect of base classifiers.
机译:主动学习是机器学习领域的热点之一。最关键的问题在于选择最有价值的未标记样品的合适价值标准的设计。传统的主动学习没有考虑到主动学习框架中的模糊性,因为模糊性可能会严重限制其性能。本文提出了一种基于模糊集理论(FT-AL)的主动学习方法来解决这一问题。首先,建立了多标准,其针对主动学习框架中的模糊性。第二,将权重因子引入多标准。最后,建立了一个模糊综合评价模型,该模型可以评价待标记样品的效果。实验结果表明,该方法对提高基础分类器的效果有积极的作用。

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